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https://github.com/titanscouting/tra-analysis.git
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ok fixed half of it
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f47be637a0
commit
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@ -429,24 +429,6 @@ class Regression:
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#todo: document completely
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#todo: document completely
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def factorial(n):
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if n==0:
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return 1
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else:
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return n*factorial(n-1)
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def num_poly_terms(num_vars, power):
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if power == 0:
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return 0
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return int(factorial(num_vars+power-1) / factorial(power) / factorial(num_vars-1)) + num_poly_terms(num_vars, power-1)
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def take_all_pwrs(vec,pwr):
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#todo: vectorize (kinda)
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combins=torch.combinations(vec, r=pwr, with_replacement=True)
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out=torch.ones(combins.size()[0])
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for i in torch.t(combins):
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out *= i
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return torch.cat(out,take_all_pwrs(vec, pwr-1))
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def set_device(new_device):
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def set_device(new_device):
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global device
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global device
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device=new_device
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device=new_device
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@ -535,15 +517,31 @@ class Regression:
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power=None
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power=None
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def __init__(self, num_vars, power):
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def __init__(self, num_vars, power):
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self.power=power
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self.power=power
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num_terms=num_poly_terms(num_vars, power)
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num_terms=self.num_poly_terms(num_vars, power)
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self.weights=torch.rand(num_terms, requires_grad=True, device=device)
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self.weights=torch.rand(num_terms, requires_grad=True, device=device)
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self.bias=torch.rand(1, requires_grad=True, device=device)
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self.bias=torch.rand(1, requires_grad=True, device=device)
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self.parameters=[self.weights,self.bias]
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self.parameters=[self.weights,self.bias]
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def num_poly_terms(self,num_vars, power):
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if power == 0:
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return 0
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return int(self.factorial(num_vars+power-1) / self.factorial(power) / self.factorial(num_vars-1)) + self.num_poly_terms(num_vars, power-1)
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def factorial(self,n):
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if n==0:
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return 1
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else:
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return n*self.factorial(n-1)
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def take_all_pwrs(self, vec,pwr):
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#todo: vectorize (kinda)
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combins=torch.combinations(vec, r=pwr, with_replacement=True)
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out=torch.ones(combins.size()[0])
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for i in torch.t(combins):
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out *= i
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return torch.cat(out,take_all_pwrs(vec, pwr-1))
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def forward(self,mtx):
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def forward(self,mtx):
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#TODO: Vectorize the last part
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#TODO: Vectorize the last part
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cols=[]
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cols=[]
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for i in torch.t(mtx):
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for i in torch.t(mtx):
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cols.append(take_all_pwrs(i,self.power))
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cols.append(self.take_all_pwrs(i,self.power))
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new_mtx=torch.t(torch.stack(cols))
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new_mtx=torch.t(torch.stack(cols))
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long_bias=self.bias.repeat([1,mtx.size()[1]])
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long_bias=self.bias.repeat([1,mtx.size()[1]])
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return torch.matmul(self.weights,new_mtx)+long_bias
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return torch.matmul(self.weights,new_mtx)+long_bias
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